Abstract

The purpose of single-image super resolution (SISR) is to reconstruct an accurate high-resolution image from a degraded low-resolution image. Owing to the lack of information in low-resolution images, SISR is a challenging problem. In particular, it is difficult to represent details, including high-frequency components, such as texture and structural information. We propose the edge profile super-resolution (EPSR) method to preserve structural information and restore texture. EPSR is achieved by stacking modified fractal residual network (mFRN) structures hierarchically and repeatedly. Each mFRN is composed of many residual edge profile blocks (REPBs) that extract features and preserve the edge, structure, and texture information of the image. For implementing REPB, we design three main modules: Residual Efficient Channel Attention Block(RECAB) module, Edge Profile(EP) module, and Context Network(CN) module. By repeating the procedure in the mFRN structure, the EPSR method could be used to extract high-fidelity features, thus preventing texture loss and preserving the structure with appropriate sharpness. Experimental results show that EPSR achieves competitive performance against state-of-the-art methods in terms of the peak signal-to-noise ratio(PSNR) and structural similarity index measure(SSIM) evaluation metrics, as well as visual results.

Highlights

  • S INGLE Image Super-Resolution(SISR) [1] has been the focus of recent research

  • To demonstrate the effectiveness of edge profile superresolution (EPSR), we focus on showing the influence of the Edge Profile (EP) and Context Network (CN) modules, which could affect the quality of SR results

  • We propose Edge Profile Super Resolution (EPSR) method to preserve the structural information and to restore texture in single-image super resolution (SISR)

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Summary

Introduction

S INGLE Image Super-Resolution(SISR) [1] has been the focus of recent research. SISR targets the reconstruction of an accurate high-resolution (HR) image from a degraded low-resolution (LR) image. For high-fidelity image, it is necessary to represent such details as high frequency components such as texture and structural information. To address this issue, numerous SR methods have been proposed, such as conventional methods [7]–[14], deep learning methods [15]– [23] and the perceptual-driven method [3], [24]–[28]

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